Job Role: GEN AI Architect
Location: Charlotte NC
Job Description Responsibilities: - Lead the architectural design and implementation of scalable generative AI-powered solutions for business automation leveraging both Azure and Google Cloud platforms.
- Architect end-to-end AI model workflows utilizing Azure AI and Google AI tools. Focus will be on applications involving complex document intelligence multi-modal data analysis and advanced image processing tasks.
- Design and oversee the development of optimized RAG (Retrieval Augmented Generation) pipelines that incorporate varied data sources and formats to improve prompt execution.
- Establish best practices for prompt engineering and iterative refinement to maximize the accuracy and relevance of outputs across diverse data types.
- Collaborate with cross-functional teams (engineering data science business) to translate complex business requirements into robust scalable AI component designs.
- Champion the integration of the clients proprietary generative AI tools into the architecture and development lifecycles.
- Direct the implementation of robust API management strategies using Apigee for secure and efficient access to AI models and related services.
- Ensure all solution designs adhere to stringent data governance policies and use cloud-native security mechanisms and compliance tools.
- Provide architectural guidance and design patterns for leveraging generative AI within critical business processes like License Audit and Product Approval emphasizing scalable and verifiable outcomes.
- Establish and automate DevOps pipelines for model deployment testing and iterative enhancements.
Skills: - Deep expertise with Azure AI services (including Cognitive Services) and Google Cloud AIML platform.
- Extensive knowledge and practical experience with document processing using Azure Document Intelligence and alternative OCR technologies.
- Mastery of Snowflake for data modeling warehousing and integrating with advanced analytics workflows.
- Proficiency with cloud orchestration tools like GKE Scheduler and asynchronous communication services (e.g. Google PubSub).
- Advanced expertise in API management using Apigee and related security best practices.
- Proven ability to design and implement Kubernetes-based AI model deployments including model optimization techniques.
- Strong command of Python for development and automation tasks.
- Demonstrated experience converting business needs into scalable and maintainable technical designs.
- Experience working with and extending custom Generative AI tooling.
- Deep understanding of Retrieval Augmented Generation (RAG) concepts and its applications.
Job Role: GEN AI Architect Location: Charlotte NC Job Description Responsibilities: Lead the architectural design and implementation of scalable generative AI-powered solutions for business automation leveraging both Azure and Google Cloud platforms. Architect end-to-end AI model workflows util...
Job Role: GEN AI Architect
Location: Charlotte NC
Job Description Responsibilities: - Lead the architectural design and implementation of scalable generative AI-powered solutions for business automation leveraging both Azure and Google Cloud platforms.
- Architect end-to-end AI model workflows utilizing Azure AI and Google AI tools. Focus will be on applications involving complex document intelligence multi-modal data analysis and advanced image processing tasks.
- Design and oversee the development of optimized RAG (Retrieval Augmented Generation) pipelines that incorporate varied data sources and formats to improve prompt execution.
- Establish best practices for prompt engineering and iterative refinement to maximize the accuracy and relevance of outputs across diverse data types.
- Collaborate with cross-functional teams (engineering data science business) to translate complex business requirements into robust scalable AI component designs.
- Champion the integration of the clients proprietary generative AI tools into the architecture and development lifecycles.
- Direct the implementation of robust API management strategies using Apigee for secure and efficient access to AI models and related services.
- Ensure all solution designs adhere to stringent data governance policies and use cloud-native security mechanisms and compliance tools.
- Provide architectural guidance and design patterns for leveraging generative AI within critical business processes like License Audit and Product Approval emphasizing scalable and verifiable outcomes.
- Establish and automate DevOps pipelines for model deployment testing and iterative enhancements.
Skills: - Deep expertise with Azure AI services (including Cognitive Services) and Google Cloud AIML platform.
- Extensive knowledge and practical experience with document processing using Azure Document Intelligence and alternative OCR technologies.
- Mastery of Snowflake for data modeling warehousing and integrating with advanced analytics workflows.
- Proficiency with cloud orchestration tools like GKE Scheduler and asynchronous communication services (e.g. Google PubSub).
- Advanced expertise in API management using Apigee and related security best practices.
- Proven ability to design and implement Kubernetes-based AI model deployments including model optimization techniques.
- Strong command of Python for development and automation tasks.
- Demonstrated experience converting business needs into scalable and maintainable technical designs.
- Experience working with and extending custom Generative AI tooling.
- Deep understanding of Retrieval Augmented Generation (RAG) concepts and its applications.
View more
View less